Abstract

We present materials informatics approach to search for superconducting hydrogen compounds, which is based on a genetic algorithm and a genetic programming. This method consists of four stages: (i) search for stable crystal structures of materials by a genetic algorithm, (ii) collection of physical and chemical property data by first-principles calculations, (iii) development of superconductivity predictor based on the database by a genetic programming, and (iv) discovery of potential candidates by regression analysis. By repeatedly performing the process as (i) $\rightarrow$ (ii) $\rightarrow$ (iii) $\rightarrow$ (iv) $\rightarrow$ (i) $\rightarrow$ $\dots$, the superconductivity of the discovered candidates is validated by first-principles calculations, and the database and predictor are further improved, which leads to an efficient search for superconducting materials. We applied this method to hypothetical ternary hydrogen compounds and predicted KScH$_{12}$ with a modulated hydrogen cage showing the superconducting critical temperature of 122 K at 300 GPa and GaAsH$_{6}$ showing 98 K at 180 GPa.

Highlights

  • The use of an informatics approach to materials science, i.e., materials informatics (MI), has been expected to bring the acceleration for the exploration of new materials [1,2,3,4]

  • We propose a materials informatics approach to search for new functional materials, which is based on a genetic algorithm (GA) and a genetic programing (GP)

  • We developed the MI method consisting of the five stages, which is based on evolutionary algorithm (EA): (i) data collection, (ii) GP training, (iii) GP prediction, (iv) GA structure search, and (v) first-principles validation

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Summary

INTRODUCTION

The use of an informatics approach to materials science, i.e., materials informatics (MI), has been expected to bring the acceleration for the exploration of new materials [1,2,3,4]. The search for new physical and chemical properties has been performed by varying compositions and external parameters such as pressure, temperature, and electromagnetic field with respect to already known materials. These approaches are considered as the exploration of optimal solutions in vast and complicated search space under given conditions. In such a case, evolutionary algorithm (EA), which is a heuristic-based approach to solving problems using mechanisms inspired by biological evolution, e.g., mating, mutation, selection, inheritance, etc., is effective for the discovery of the optimal solutions. We propose a materials informatics approach to search for new functional materials, which is based on a genetic algorithm (GA) and a genetic programing (GP)

EVOLUTIONARY ALGORITHMS
GP for predictor development
GA for crystal structure search
APPLICATION TO SEARCH FOR SUPERCONDUCTING HYDROGEN COMPOUNDS
Data collection
GP training
GP prediction
KScH12
GaAsH6
Findings
DISCUSSION AND CONCLUSION
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